Using accelerometer, high sample rate GPS and magnetometer data to develop a cattle movement and behaviour model
journal contribution
posted on 2017-12-06, 00:00authored byY Guo, G Poulton, P Corke, G Bishop-Hurley, T Wark, David SwainDavid Swain
The study described in this paper developed a model of animal movement, which explicitly recognised each individual as the central unit of measure. The model was developed by learning from a real dataset that measured and calculated, for individual cows in a herd, their linear and angular positions and directional and angular speeds. Two learning algorithms were implemented: a Hidden Markov model (HMM) and a long-term prediction algorithm. It is shown that a HMM can be used to describe the animal’s movement and state transition behaviour within several “stay” areas where cows remained for long periods. Model parameters were estimated for hidden behaviour states such as relocating, foraging and bedding. For cows’ movement between the “stay” areas a long-term prediction algorithm was implemented. By combining these two algorithms it was possible to develop a successful model, which achieved similar results to the animal behaviour data collected. This modelling methodology could easily be applied to interactions of other animal species.
Funding
Category 1 - Australian Competitive Grants (this includes ARC, NHMRC)